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Assessing Motivational Strategies in Serious Games Using Hidden Markov Models

机译:使用隐藏的马尔可夫模型评估严肃游戏的动机策略。

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Recent research has extended tutor strategies to model not just interventions to offer information and activities, but also interventions to support learners' wills and motivation. It is important to investigate new ways, intertwined with learners' performance (successful completion of tasks) and judgement (self-report questionnaires), for evaluating tutor intervention strategies. One promising way is the use of physiological sensors. Within this paper, we study some motivational strategies that were implemented in a serious game called HeapMotiv to support learners' performance and motivation. We build several hidden Markov models which use Keller's ARCS model of motivation and electrophysiological data (heart rate HR, skin conductance SC and EEG) and are able to identify physiological patterns correlated with different motivational strategies.
机译:最近的研究扩展了导师策略,不仅可以模拟提供信息和活动的干预措施,而且还可以为支持学习者的意志和动力的干预措施建模。重要的是要研究与学习者表现(成功完成任务)和判断力(自我报告调查表)交织在一起的新方法,以评估导师干预策略。一种有前途的方法是使用生理传感器。在本文中,我们研究了一些动机策略,这些策略已在名为HeapMotiv的严肃游戏中实施,以支持学习者的表现和动机。我们使用Keller的动机和电生理数据(心率HR,皮肤电导SC和EEG)的ARCS模型建立了几个隐藏的马尔可夫模型,并能够识别与不同动机策略相关的生理模式。

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